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A two-step fault diagnosis framework for rolling element bearings with imbalanced data

机译:数据不平衡的滚动轴承的两步故障诊断框架

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Rolling element bearings constitute the key parts on rotating machinery and their fault diagnosis are of great importance. In this paper, a novel Two-Step fault diagnosis framework is proposed to diagnose the status of rolling element bearings with imbalanced data. The Wavelet Packet Transform (WPT) is used to determine the feature vectors. 16-dimensional wavelet packet node energies were extracted from the original datasets as the feature vectors prepared to input to the classifiers. Next, our proposed framework consists of two steps for the fault diagnosis, where Step One makes use of Weighted Extreme Learning Machine (weighted ELM) in an effort to classify the normal or abnormal categories, and Step Two further diagnoses the underlying anomaly in details. The effectiveness of our proposed approach is testified on the raw data collected from the rolling element bearing experiments conducted in our Institute, and the empirical results showed that our approach is really fast and can achieve the diagnosis accuracies more than 95%.
机译:滚动轴承是旋转机械的关键部件,其故障诊断非常重要。本文提出了一种新颖的两步式故障诊断框架,用于诊断数据不平衡的滚动轴承的状态。小波包变换(WPT)用于确定特征向量。从原始数据集中提取16维小波包节点能量,作为准备输入到分类器的特征向量。接下来,我们提出的框架包括两个故障诊断步骤,其中第一步使用加权极限学习机(加权ELM)来对正常或异常类别进行分类,而第二步进一步详细诊断潜在异常。我们研究所提出的滚动轴承试验的原始数据证明了我们提出的方法的有效性,实证结果表明我们的方法确实是快速的并且可以达到95%以上的诊断准确性。

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